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Multivariate statistics / Linear algebra / Matrix theory / Singular value decomposition / Spectral clustering / K-means clustering / Support vector machine / Eigenvalues and eigenvectors / Cluster analysis / Statistics / Algebra / Mathematics
Date: 2007-12-15 17:53:34
Multivariate statistics
Linear algebra
Matrix theory
Singular value decomposition
Spectral clustering
K-means clustering
Support vector machine
Eigenvalues and eigenvectors
Cluster analysis
Statistics
Algebra
Mathematics

Regularized Spectral learning by Marina Meila, Susan Shortreed and Liang Xu TECHNICAL REPORT No. #465

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